几何不变异常检测

Ashay Patel, Petru-Daniel Tudosiu, Walter Hugo Lopez Pinaya, Olusola Adeleke, Gary Cook, Vicky Goh, Sebastien Ourselin, M Jorge Cardoso
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引用次数: 0

摘要

癌症是一种高度异质性的病症,正电子发射断层扫描最能将其形象化。由于这种异质性,可以使用无监督学习异常检测模型建立通用癌症检测模型。虽然该领域之前的工作已经展示了异常检测方法(如基于变换器的方法)的功效,但这些方法在数据几何差异方面表现出明显的脆弱性。图像分辨率或观察视野的变化会导致预测不准确,即使进行了大量的数据预处理和增强也是如此。我们提出了一种新的空间调节机制,使模型能够适应和学习不同的数据几何形状,并将其应用于最先进的矢量量化变异自动编码器 + 变压器异常检测模型。我们展示了这种空间调节机制与没有调节的相同模型相比,在统计上显著提高了模型在全身数据上的性能,同时允许模型在不同的数据几何形状下执行推理。
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Geometry-invariant abnormality detection.

Cancer is a highly heterogeneous condition best visualised in positron emission tomography. Due to this heterogeneity, a general-purpose cancer detection model can be built using unsupervised learning anomaly detection models. While prior work in this field has showcased the efficacy of abnormality detection methods (e.g. Transformer-based), these have shown significant vulnerabilities to differences in data geometry. Changes in image resolution or observed field of view can result in inaccurate predictions, even with significant data pre-processing and augmentation. We propose a new spatial conditioning mechanism that enables models to adapt and learn from varying data geometries, and apply it to a state-of-the-art Vector-Quantized Variational Autoencoder + Transformer abnormality detection model. We showcase that this spatial conditioning mechanism statistically-significantly improves model performance on whole-body data compared to the same model without conditioning, while allowing the model to perform inference at varying data geometries.

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